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Ride-Hailing Order Dispatching at DiDi via Reinforcement Learning

Zhiwei Qin, Xiaocheng Tang, Yan Jiao, Fan Zhang, Zhe Xu, Hongtu Zhu, Jieping Ye

2020INFORMS Journal on Applied Analytics133 citationsDOI

Abstract

Order dispatching is instrumental to the marketplace engine of a large-scale ride-hailing platform, such as the DiDi platform, which continuously matches passenger trip requests to drivers at a scale of tens of millions per day. Because of the dynamic and stochastic nature of supply and demand in this context, the ride-hailing order-dispatching problem is challenging to solve for an optimal solution. Added to the complexity are considerations of system response time, reliability, and multiple objectives. In this paper, we describe how our approach to this optimization problem has evolved from a combinatorial optimization approach to one that encompasses a semi-Markov decision-process model and deep reinforcement learning. We discuss the various practical considerations of our solution development and real-world impact to the business.

Topics & Concepts

Reinforcement learningMarkov decision processComputer scienceContext (archaeology)Order (exchange)Operations researchScale (ratio)Reliability (semiconductor)Order fulfillmentProcess (computing)Markov processIndustrial engineeringMathematical optimizationSupply chainArtificial intelligenceEngineeringEconomicsBusinessMarketingMathematicsStatisticsPhysicsFinancePower (physics)Operating systemBiologyQuantum mechanicsPaleontologyTransportation and Mobility InnovationsTransportation Planning and OptimizationTraffic control and management
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